Car Type Recognition with Deep Neural Networks

02/23/2016
by   Heikki Huttunen, et al.
0

In this paper we study automatic recognition of cars of four types: Bus, Truck, Van and Small car. For this problem we consider two data driven frameworks: a deep neural network and a support vector machine using SIFT features. The accuracy of the methods is validated with a database of over 6500 images, and the resulting prediction accuracy is over 97 exceeds the accuracies of earlier studies that use manually engineered feature extraction pipelines.

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